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Frequency-Separable Hamiltonian Neural Network for Multi-Timescale Dynamics

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While Hamiltonian mechanics provides a powerful inductive bias for neural networks modeling dynamical systems, Hamiltonian Neural Networks and their variants often fail to capture complex temporal dynamics spanning multiple timescales. This limitation is commonly linked to the spectral bias of deep neural networks, which favors learning low-frequency, slow-varying dynamics. Prior approaches have sought to address this issue through symplectic integration schemes that enforce energy conservation or by incorporating geometric constraints to impose structure on the configuration-space. However, such methods either remain limited in their ability to fully capture multiscale dynamics or require substantial domain specific assumptions. In this work, we exploit the observation that Hamiltonian functions admit decompositions into explicit fast and slow modes and can be reconstructed from these components. We introduce the Frequency-Separable Hamiltonian Neural Network (FS-HNN), which parameterizes the system Hamiltonian using multiple networks, each governed by Hamiltonian dynamics and trained on data sampled at distinct timescales. We further extend this framework to partial differential equations by learning a state- and boundary-conditioned symplectic operators. Empirically, we show that FS-HNN improves long-horizon extrapolation performance on challenging dynamical systems and generalizes across a broad range of ODE and PDE problems.

Yaojun Li, Yulong Yang, Christine Allen-Blanchette• 2026

Related benchmarks

TaskDatasetResultRank
Rollout PredictionDouble pendulum
Rollout MSE1.13
12
Rollout PredictionPendulum
Rollout MSE1.38
12
Rollout PredictionFermi-Pasta-Ulam-Tsingou
Rollout MSE0.0269
12
PDE Rollout Prediction2D Shallow Water Equations (SWE) Gaussian-pulse initial condition
Rollout MSE1.31
6
PDE Rollout PredictionIncompressible Taylor–Green vortex
Rollout MSE1.91
6
PDE Rollout Prediction2D Shallow Water Equations (SWE) random initial condition
Rollout MSE1.36
6
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